Literature DB >> 33506363

MutagenPred-GCNNs: A Graph Convolutional Neural Network-Based Classification Model for Mutagenicity Prediction with Data-Driven Molecular Fingerprints.

Shimeng Li1, Li Zhang1,2,3, Huawei Feng1, Jinhui Meng1, Di Xie1, Liwei Yi4, Isaiah T Arkin5, Hongsheng Liu6,7,8.   

Abstract

An important task in the early stage of drug discovery is the identification of mutagenic compounds. Mutagenicity prediction models that can interpret relationships between toxicological endpoints and compound structures are especially favorable. In this research, we used an advanced graph convolutional neural network (GCNN) architecture to identify the molecular representation and develop predictive models based on these representations. The predictive model based on features extracted by GCNNs can not only predict the mutagenicity of compounds but also identify the structure alerts in compounds. In fivefold cross-validation and external validation, the highest area under the curve was 0.8782 and 0.8382, respectively; the highest accuracy (Q) was 80.98% and 76.63%, respectively; the highest sensitivity was 83.27% and 78.92%, respectively; and the highest specificity was 78.83% and 76.32%, respectively. Additionally, our model also identified some toxicophores, such as aromatic nitro, three-membered heterocycles, quinones, and nitrogen and sulfur mustard. These results indicate that GCNNs could learn the features of mutagens effectively. In summary, we developed a mutagenicity classification model with high predictive performance and interpretability based on a data-driven molecular representation trained through GCNNs.

Entities:  

Keywords:  Deep learning; Graph convolutional networks; Mutagenicity prediction

Year:  2021        PMID: 33506363     DOI: 10.1007/s12539-020-00407-2

Source DB:  PubMed          Journal:  Interdiscip Sci        ISSN: 1867-1462            Impact factor:   2.233


  18 in total

1.  Estimation of ADME properties with substructure pattern recognition.

Authors:  Jie Shen; Feixiong Cheng; You Xu; Weihua Li; Yun Tang
Journal:  J Chem Inf Model       Date:  2010-06-28       Impact factor: 4.956

2.  Comparative evaluation of in silico systems for ames test mutagenicity prediction: scope and limitations.

Authors:  Alexander Hillebrecht; Wolfgang Muster; Alessandro Brigo; Manfred Kansy; Thomas Weiser; Thomas Singer
Journal:  Chem Res Toxicol       Date:  2011-05-02       Impact factor: 3.739

3.  Deep neural nets as a method for quantitative structure-activity relationships.

Authors:  Junshui Ma; Robert P Sheridan; Andy Liaw; George E Dahl; Vladimir Svetnik
Journal:  J Chem Inf Model       Date:  2015-02-17       Impact factor: 4.956

Review 4.  Nongenotoxic carcinogenicity of chemicals: mechanisms of action and early recognition through a new set of structural alerts.

Authors:  Romualdo Benigni; Cecilia Bossa; Olga Tcheremenskaia
Journal:  Chem Rev       Date:  2013-03-08       Impact factor: 60.622

Review 5.  Addressing toxicity risk when designing and selecting compounds in early drug discovery.

Authors:  Matthew D Segall; Chris Barber
Journal:  Drug Discov Today       Date:  2014-01-19       Impact factor: 7.851

6.  Effectiveness of CASE Ultra Expert System in Evaluating Adverse Effects of Drugs.

Authors:  Roustem Saiakhov; Suman Chakravarti; Gilles Klopman
Journal:  Mol Inform       Date:  2013-01-14       Impact factor: 3.353

7.  Toxicological screening.

Authors:  S Parasuraman
Journal:  J Pharmacol Pharmacother       Date:  2011-04

8.  Deep-learning: investigating deep neural networks hyper-parameters and comparison of performance to shallow methods for modeling bioactivity data.

Authors:  Alexios Koutsoukas; Keith J Monaghan; Xiaoli Li; Jun Huan
Journal:  J Cheminform       Date:  2017-06-28       Impact factor: 5.514

9.  LightGBM: An Effective and Scalable Algorithm for Prediction of Chemical Toxicity-Application to the Tox21 and Mutagenicity Data Sets.

Authors:  Jin Zhang; Daniel Mucs; Ulf Norinder; Fredrik Svensson
Journal:  J Chem Inf Model       Date:  2019-10-09       Impact factor: 4.956

10.  Deep Learning Applications for Predicting Pharmacological Properties of Drugs and Drug Repurposing Using Transcriptomic Data.

Authors:  Alexander Aliper; Sergey Plis; Artem Artemov; Alvaro Ulloa; Polina Mamoshina; Alex Zhavoronkov
Journal:  Mol Pharm       Date:  2016-06-08       Impact factor: 4.939

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  2 in total

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Journal:  Bioinformatics       Date:  2022-06-24       Impact factor: 6.931

2.  A Deep Neural Network-Based Model for Quantitative Evaluation of the Effects of Swimming Training.

Authors:  Jun-Jie Hou; Hui-Li Tian; Biao Lu
Journal:  Comput Intell Neurosci       Date:  2022-09-30
  2 in total

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